Suboptimal health related behaviors and habits; and resulting chronic diseases are responsible for majority of deaths globally. Studies show that providing personalized support to patients yield improved results by preventing and/or timely treatment of these problems. Digital, just-in-time and adaptive interventions are mobile phone-based notifications that are being utilized to support people wherever and whenever necessary in coping with their health problems. In this research, we propose a reinforcement learning-based mechanism to personalize interventions in terms of timing, frequency and preferred type(s). We simultaneously employ two reinforcement learning models, namely intervention-selection and opportune-moment-identification; capt...
Providing behavioral health interventions via smartphones allows these interventions to be adapted t...
The use and development of mobile interventions are experiencing rapid growth. Ideally, mobile devic...
While reinforcement learning (RL) has proven to be the approach of choice for tackling many complex ...
Adverse and suboptimal health behaviors and chronic diseases are responsible from a substantial majo...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Objective: We aim to deliver a framework with 2 main objectives: 1) facilitating the design of theor...
Just-in-time adaptive intervention (JITAI) has gained attention recently and previous studies have i...
Just-in-time adaptive intervention (JITAI) has gained attention recently and previous studies have i...
Momentary context data is an important source for intelligent decision making towards personalizatio...
We introduce an end-to-end reinforcement learning (RL) solution for the problem of sending personali...
Personalization of support in health and wellbeing settings is challenging. While personalization ha...
ObjectiveProviding behavioral health interventions via smartphones allows these interventions to be ...
A deeper understanding of human physiology, combined with improvements in sensing technologies, is f...
Research has shown that personalization of health interventions can contribute to an improved effect...
Providing behavioral health interventions via smartphones allows these interventions to be adapted t...
The use and development of mobile interventions are experiencing rapid growth. Ideally, mobile devic...
While reinforcement learning (RL) has proven to be the approach of choice for tackling many complex ...
Adverse and suboptimal health behaviors and chronic diseases are responsible from a substantial majo...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Mobile health (mHealth) intervention systems can employ adaptive strategies to interact with users. ...
Objective: We aim to deliver a framework with 2 main objectives: 1) facilitating the design of theor...
Just-in-time adaptive intervention (JITAI) has gained attention recently and previous studies have i...
Just-in-time adaptive intervention (JITAI) has gained attention recently and previous studies have i...
Momentary context data is an important source for intelligent decision making towards personalizatio...
We introduce an end-to-end reinforcement learning (RL) solution for the problem of sending personali...
Personalization of support in health and wellbeing settings is challenging. While personalization ha...
ObjectiveProviding behavioral health interventions via smartphones allows these interventions to be ...
A deeper understanding of human physiology, combined with improvements in sensing technologies, is f...
Research has shown that personalization of health interventions can contribute to an improved effect...
Providing behavioral health interventions via smartphones allows these interventions to be adapted t...
The use and development of mobile interventions are experiencing rapid growth. Ideally, mobile devic...
While reinforcement learning (RL) has proven to be the approach of choice for tackling many complex ...